Title of article :
OCR with the Deep CNN Model for Ligature Script-Based Languages like Manchu
Author/Authors :
Zhang, Diandian School of Literature - South China Normal University, China , Liu,Yan School of Literature - South China Normal University, China , Wang, Zhuowei School of Computers - Guangdong University of Technology, China , Wang, Depei School of Automation - Guangdong University of Technology, China
Abstract :
Manchu is a low-resource language that is rarely involved in text recognition technology. Because of the combination of typefaces, ordinary text recognition practice requires segmentation before recognition, which affects the recognition accuracy. In this paper, we propose a Manchu text recognition system divided into two parts: text recognition and text retrieval. First, a deep CNN model is used for text recognition, using a sliding window instead of manual segmentation. Second, text retrieval finds similarities within the image and locates the position of the recognized text in the database; this process is described in detail. We conducted comparative experiments on the FAST-NU dataset using different quantities of sample data, as well as comparisons with the latest model. The experiments revealed that the optimal results of the proposed deep CNN model reached 98.84%.
Keywords :
OCR , Deep CNN Model , Ligature Script , Languages like Manchu
Journal title :
Scientific Programming